A Bioinformatic Approach Validated Utilizing Machine Learning Algorithms to Identify Relevant Biomarkers and Crucial Pathways in Gallbladder Cancer
Rabea Khatun, Wahia Tasnim, Maksuda Akter, Md Manowarul Islam, Md., Ashraf Uddin, Md. Zulfiker Mahmud, Saurav Chandra Das

TL;DR
This study employs machine learning and bioinformatics to identify key biomarkers and pathways involved in gallbladder cancer, providing potential targets for diagnosis and therapy.
Contribution
It integrates multiple bioinformatics and machine learning techniques to discover novel biomarkers and crucial pathways in GBC, validated across datasets.
Findings
Identified 11 hub genes associated with GBC.
Developed ML models that accurately distinguish GBC from normal samples.
Highlighted SLIT3, COL7A1, and CLDN4 as strongly linked to GBC development.
Abstract
Gallbladder cancer (GBC) is the most frequent cause of disease among biliary tract neoplasms. Identifying the molecular mechanisms and biomarkers linked to GBC progression has been a significant challenge in scientific research. Few recent studies have explored the roles of biomarkers in GBC. Our study aimed to identify biomarkers in GBC using machine learning (ML) and bioinformatics techniques. We compared GBC tumor samples with normal samples to identify differentially expressed genes (DEGs) from two microarray datasets (GSE100363, GSE139682) obtained from the NCBI GEO database. A total of 146 DEGs were found, with 39 up-regulated and 107 down-regulated genes. Functional enrichment analysis of these DEGs was performed using Gene Ontology (GO) terms and REACTOME pathways through DAVID. The protein-protein interaction network was constructed using the STRING database. To identify hub…
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Taxonomy
TopicsCholangiocarcinoma and Gallbladder Cancer Studies
MethodsSupport Vector Machine · Feature Selection · Ontology
